Connected Vehicles Travel Time Prediction in a Scenario with Adaptive Traffic Light Control

A. Agafonov, Evgeniya Efimenko
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Abstract

The paper is devoted to the short-term travel time prediction of individual connected vehicles in a regulated road network with adaptive control of traffic lights. The estimation of the total travel time combines both the travel time along road network links, obtained by a neural network model, and the waiting time at regulated intersections. At the first stage, it is proposed to use the model based on a neural network to estimate the travel time along the road links of the transportation network. At the second stage, the phase of the traffic light is predicted using the adaptive control method. Finally, the waiting time at the intersection is calculated based on the predicted arrival time of the vehicle at the intersection and the duration of the traffic light phase. Experimental results in a microscopic simulation environment allow us to conclude that the proposed approach outperforms baseline methods in terms of the mean absolute error criterion.
基于自适应交通灯控制的互联车辆行驶时间预测
研究了交通信号灯自适应控制下的道路网络中联网车辆的短期行驶时间预测问题。总行程时间的估计结合了由神经网络模型得到的沿路网路段的行程时间和在规定路口的等待时间。首先,提出利用基于神经网络的模型对交通网络各路段的出行时间进行估计;第二阶段,采用自适应控制方法预测交通灯的相位。最后,根据预测车辆到达交叉口的时间和红绿灯阶段的持续时间,计算出交叉口的等待时间。微观模拟环境中的实验结果使我们得出结论,所提出的方法在平均绝对误差标准方面优于基线方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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